Hu Shenggang, Al-Ani Jabir Alshehabi, Hughes Karen D, Denier Nicole, Konnikov Alla, Ding Lei, Xie Jinhan, Hu Yang, Tarafdar Monideepa, Jiang Bei, Kong Linglong, Dai Hongsheng
Department of Mathematical Sciences, University of Essex, Colchester, United Kingdom.
Department of Strategy, Entrepreneurship and Management, and Sociology, University of Alberta, Edmonton, AB, Canada.
Front Big Data. 2022 Feb 18;5:805713. doi: 10.3389/fdata.2022.805713. eCollection 2022.
Despite progress toward gender equality in the labor market over the past few decades, gender segregation in labor force composition and labor market outcomes persists. Evidence has shown that job advertisements may express gender preferences, which may selectively attract potential job candidates to apply for a given post and thus reinforce gendered labor force composition and outcomes. Removing gender-explicit words from job advertisements does not fully solve the problem as certain implicit traits are more closely associated with men, such as , while others are more closely associated with women, such as . However, it is not always possible to find neutral alternatives for these traits, making it hard to search for candidates with desired characteristics without entailing gender discrimination. Existing algorithms mainly focus on the detection of the presence of gender biases in job advertisements without providing a solution to how the text should be (re)worded. To address this problem, we propose an algorithm that evaluates gender bias in the input text and provides guidance on how the text should be debiased by offering alternative wording that is closely related to the original input. Our proposed method promises broad application in the human resources process, ranging from the development of job advertisements to algorithm-assisted screening of job applications.
尽管在过去几十年劳动力市场的性别平等方面取得了进展,但劳动力构成和劳动力市场结果中的性别隔离现象仍然存在。有证据表明,招聘广告可能会表达性别偏好,这可能会有选择地吸引潜在求职者申请特定职位,从而强化性别化的劳动力构成和结果。从招聘广告中删除明确的性别词汇并不能完全解决问题,因为某些隐性特征与男性联系更紧密,比如 ,而其他一些则与女性联系更紧密,比如 。然而,并不总是能够为这些特征找到中性的替代词,这使得在不涉及性别歧视的情况下寻找具有所需特征的候选人变得困难。现有算法主要侧重于检测招聘广告中性别偏见的存在,而没有提供如何对文本进行(重新)措辞的解决方案。为了解决这个问题,我们提出了一种算法,该算法可以评估输入文本中的性别偏见,并通过提供与原始输入密切相关的替代措辞,为如何消除文本中的偏见提供指导。我们提出的方法有望在人力资源流程中得到广泛应用,从招聘广告的制定到算法辅助的求职申请筛选。